{
 "cells": [
  {
   "cell_type": "code",
   "execution_count": 112,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Collecting fastcluster\n",
      "  Downloading https://files.pythonhosted.org/packages/4d/eb/ba07eab888792c1c8edc77b65e1c5d4c74ffbde3666751db3eb0cdb26c8c/fastcluster-1.1.28-cp27-cp27m-macosx_10_13_x86_64.whl\n",
      "Requirement already satisfied: numpy>=1.9 in /Users/haithamelmarakeby/anaconda2/envs/min_env/lib/python2.7/site-packages (from fastcluster) (1.16.6)\n",
      "Installing collected packages: fastcluster\n",
      "Successfully installed fastcluster-1.1.28\n"
     ]
    }
   ],
   "source": [
    "! pip install fastcluster"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 7,
   "metadata": {},
   "outputs": [],
   "source": [
    "import os\n",
    "import sys\n",
    "from os.path import dirname, realpath, join\n",
    "base_dir = dirname(dirname(os.getcwd()))\n",
    "sys.path.insert(0, base_dir)\n",
    "from config_path import PROSTATE_DATA_PATH, PLOTS_PATH\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 42,
   "metadata": {},
   "outputs": [],
   "source": [
    "import pandas as pd\n",
    "import numpy as np\n",
    "from os.path import join\n",
    "from matplotlib import pyplot as plt\n",
    "import seaborn as sns"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 8,
   "metadata": {},
   "outputs": [],
   "source": [
    "base_dir = PROSTATE_DATA_PATH"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 10,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "'/Users/haithamelmarakeby/PycharmProjects/pnet2/_database/prostate'"
      ]
     },
     "execution_count": 10,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "base_dir"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 11,
   "metadata": {},
   "outputs": [],
   "source": [
    "def get_ids(sheet_name):\n",
    "    samples_filename = 'Data S5 sample Identifiers.xlsx'\n",
    "    df = pd.read_excel(samples_filename, sheet_name=sheet_name, index_col=0)\n",
    "    return df"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 12,
   "metadata": {},
   "outputs": [],
   "source": [
    "PRAD_samples = get_ids('external_val_primary')\n",
    "mets_samples = get_ids('external_val_mets')\n",
    "test_samples = get_ids('Testing')\n",
    "train_samples = get_ids('Training')\n",
    "valid_samples = get_ids('Internal validation')"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 13,
   "metadata": {},
   "outputs": [],
   "source": [
    "p1000_filename =  join(base_dir,'processed/P1000_final_analysis_set_cross_important_only.csv')\n",
    "p1000_mut = pd.read_csv(p1000_filename, index_col=0)\n",
    "\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 14,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "(1011, 14378)"
      ]
     },
     "execution_count": 14,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "p1000_mut.shape"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 15,
   "metadata": {},
   "outputs": [],
   "source": [
    "ind = p1000_mut.index.isin(test_samples.index)\n",
    "test_mut = p1000_mut[ind]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 16,
   "metadata": {},
   "outputs": [],
   "source": [
    "ind = p1000_mut.index.isin(valid_samples.index)\n",
    "valid_mut = p1000_mut[ind]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 17,
   "metadata": {},
   "outputs": [],
   "source": [
    "ind = p1000_mut.index.isin(train_samples.index)\n",
    "train_mut = p1000_mut[ind]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 18,
   "metadata": {},
   "outputs": [],
   "source": [
    "PRAD_filename =  join(base_dir,'external_validation/PRAD/mut_matrix.csv')\n",
    "PRAD_mut = pd.read_csv(PRAD_filename, index_col=0)\n",
    "ind = PRAD_mut.index.isin(PRAD_samples.index)\n",
    "PRAD_mut = PRAD_mut[ind]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 19,
   "metadata": {},
   "outputs": [],
   "source": [
    "mets_filename= join(base_dir,'external_validation/Met500/Met500_mut_matrix.csv')\n",
    "mets_mut=pd.read_csv(mets_filename, index_col=0)\n",
    "mets_mut.index = mets_mut.index.str.split('.', 1).str[0]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 20,
   "metadata": {},
   "outputs": [],
   "source": [
    "ind = mets_mut.index.isin(mets_samples.index)\n",
    "mets_mut = mets_mut[ind]\n",
    "mets_mut.fillna(0.0, inplace=True)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 21,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "(40, 16576)"
      ]
     },
     "execution_count": 21,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "mets_mut.shape"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 22,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "(130, 15005)"
      ]
     },
     "execution_count": 22,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "PRAD_mut.shape"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 23,
   "metadata": {},
   "outputs": [],
   "source": [
    "frames = [ valid_mut, test_mut, mets_mut, PRAD_mut]\n",
    "common_cols = list(set.intersection(*(set(df.columns) for df in frames)))\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 24,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "9294"
      ]
     },
     "execution_count": 24,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "len(common_cols)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 25,
   "metadata": {},
   "outputs": [],
   "source": [
    "data = pd.concat([df[common_cols] for df in frames],  keys=[  'Validation' , 'Test', 'External Vlaidation (mets)', 'External Vlaidation (primary)'])"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 26,
   "metadata": {},
   "outputs": [
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     },
     "execution_count": 26,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "data.head()"
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  {
   "cell_type": "code",
   "execution_count": 27,
   "metadata": {},
   "outputs": [],
   "source": [
    "data = data.reset_index()\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 28,
   "metadata": {},
   "outputs": [
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       "      <td>0.0</td>\n",
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       "      <td>0.0</td>\n",
       "      <td>0.0</td>\n",
       "      <td>0.0</td>\n",
       "      <td>...</td>\n",
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       "      <td>0.0</td>\n",
       "      <td>0.0</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>4</th>\n",
       "      <td>Validation</td>\n",
       "      <td>08-006H1_LN</td>\n",
       "      <td>0.0</td>\n",
       "      <td>0.0</td>\n",
       "      <td>0.0</td>\n",
       "      <td>0.0</td>\n",
       "      <td>0.0</td>\n",
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       "      <td>0.0</td>\n",
       "      <td>...</td>\n",
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       "      <td>0.0</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>\n",
       "<p>5 rows × 9296 columns</p>\n",
       "</div>"
      ],
      "text/plain": [
       "      level_0         level_1  RNF14  RNF17  RNF10  RNF13  REM1  REM2  DUOXA2  \\\n",
       "0  Validation     00-029N9_LN    0.0    0.0    0.0    0.0   0.0   0.0     0.0   \n",
       "1  Validation     04-149E2_LN    0.0    0.0    0.0    0.0   0.0   0.0     0.0   \n",
       "2  Validation   05-011G4_LUNG    0.0    0.0    0.0    0.0   0.0   0.0     0.0   \n",
       "3  Validation  05-214BB2_BONE    0.0    0.0    0.0    0.0   0.0   0.0     0.0   \n",
       "4  Validation     08-006H1_LN    0.0    0.0    0.0    0.0   0.0   0.0     0.0   \n",
       "\n",
       "   PMM1  ...   PLEKHG1  PLEKHG6  PLEKHG7  SELK  SLC7A14  SLC7A13  GNGT1  PTRF  \\\n",
       "0   0.0  ...       0.0      0.0      0.0   0.0      0.0      0.0    0.0   0.0   \n",
       "1   0.0  ...       0.0      0.0      0.0   0.0      0.0      0.0    0.0   0.0   \n",
       "2   0.0  ...       0.0      0.0      0.0   0.0      0.0      0.0    0.0   0.0   \n",
       "3   0.0  ...       0.0      0.0      0.0   0.0      0.0      0.0    0.0   0.0   \n",
       "4   0.0  ...       0.0      0.0      0.0   0.0      0.0      0.0    0.0   0.0   \n",
       "\n",
       "   NFIX  SELP  \n",
       "0   0.0   0.0  \n",
       "1   0.0   0.0  \n",
       "2   0.0   0.0  \n",
       "3   0.0   0.0  \n",
       "4   0.0   0.0  \n",
       "\n",
       "[5 rows x 9296 columns]"
      ]
     },
     "execution_count": 28,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "data.head()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 29,
   "metadata": {},
   "outputs": [
    {
     "data": {
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       "      <th></th>\n",
       "      <th>RNF14</th>\n",
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       "      <th>RNF13</th>\n",
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       "      <th>REM2</th>\n",
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       "<p>5 rows × 9294 columns</p>\n",
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      ],
      "text/plain": [
       "   RNF14  RNF17  RNF10  RNF13  REM1  REM2  DUOXA2  PMM1  ASS1  ZNF878  ...   \\\n",
       "0    0.0    0.0    0.0    0.0   0.0   0.0     0.0   0.0   0.0     0.0  ...    \n",
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       "4    0.0    0.0    0.0    0.0   0.0   0.0     0.0   0.0   0.0     0.0  ...    \n",
       "\n",
       "   PLEKHG1  PLEKHG6  PLEKHG7  SELK  SLC7A14  SLC7A13  GNGT1  PTRF  NFIX  SELP  \n",
       "0      0.0      0.0      0.0   0.0      0.0      0.0    0.0   0.0   0.0   0.0  \n",
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       "2      0.0      0.0      0.0   0.0      0.0      0.0    0.0   0.0   0.0   0.0  \n",
       "3      0.0      0.0      0.0   0.0      0.0      0.0    0.0   0.0   0.0   0.0  \n",
       "4      0.0      0.0      0.0   0.0      0.0      0.0    0.0   0.0   0.0   0.0  \n",
       "\n",
       "[5 rows x 9294 columns]"
      ]
     },
     "execution_count": 29,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "ids= data.pop('level_1')\n",
    "group = data.pop('level_0')\n",
    "data.head()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 30,
   "metadata": {},
   "outputs": [],
   "source": [
    "\n",
    "data_val =  data.values"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 31,
   "metadata": {},
   "outputs": [],
   "source": [
    "from scipy.spatial.distance import pdist, squareform\n",
    "dists = pdist(data_val, 'jaccard')\n",
    "dists = squareform(dists)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 32,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "(367, 367)"
      ]
     },
     "execution_count": 32,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "dists.shape"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 33,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "array(['Validation', 'Test', 'External Vlaidation (mets)',\n",
       "       'External Vlaidation (primary)'], dtype=object)"
      ]
     },
     "execution_count": 33,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "group.unique()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 34,
   "metadata": {},
   "outputs": [],
   "source": [
    "lut = dict(zip(group.unique(), \"rgbcm\"))  \n",
    "row_colors = group.map(lut)  "
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 35,
   "metadata": {},
   "outputs": [],
   "source": [
    "dists_df = pd.DataFrame(dists, index= ids, columns=ids )"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 36,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "pandas.core.series.Series"
      ]
     },
     "execution_count": 36,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "type(row_colors)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 37,
   "metadata": {},
   "outputs": [],
   "source": [
    "row_colors.index = ids\n",
    "# row_colors"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 43,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "<Figure size 720x720 with 0 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 720x720 with 5 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    }
   ],
   "source": [
    "import scipy.spatial as sp, scipy.cluster.hierarchy as hc\n",
    "\n",
    "linkage = hc.linkage(sp.distance.squareform(dists), method='average')\n",
    "plt.figure(figsize=(10,10))\n",
    "sns.clustermap(1-dists_df, row_linkage=linkage, row_colors=row_colors,  col_linkage=linkage,  cmap='Reds', row_cluster=False, col_cluster=False)\n",
    "saving_dir= join(PLOTS_PATH, 'reviews/1-common_samples')\n",
    "plt.savefig(join(saving_dir, 'distance.png'))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "Python [conda env:min_env]",
   "language": "python",
   "name": "conda-env-min_env-py"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 2
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython2",
   "version": "2.7.15"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 2
}
